GenAINet: Enabling Wireless Collective Intelligence via Knowledge
Transfer and Reasoning
- URL: http://arxiv.org/abs/2402.16631v2
- Date: Wed, 28 Feb 2024 19:43:51 GMT
- Title: GenAINet: Enabling Wireless Collective Intelligence via Knowledge
Transfer and Reasoning
- Authors: Hang Zou, Qiyang Zhao, Lina Bariah, Yu Tian, Mehdi Bennis, Samson
Lasaulce, Merouane Debbah, Faouzi Bader
- Abstract summary: Connecting GenAI agents over a wireless network can potentially unleash the power of collective intelligence.
Current wireless networks are designed as a "data pipe" and are not suited to accommodate and leverage the power of GenAI.
We propose the GenAINet framework in which distributed GenAI agents communicate knowledge to accomplish arbitrary tasks.
- Score: 30.74259663690069
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Generative artificial intelligence (GenAI) and communication networks are
expected to have groundbreaking synergies in 6G. Connecting GenAI agents over a
wireless network can potentially unleash the power of collective intelligence
and pave the way for artificial general intelligence (AGI). However, current
wireless networks are designed as a "data pipe" and are not suited to
accommodate and leverage the power of GenAI. In this paper, we propose the
GenAINet framework in which distributed GenAI agents communicate knowledge
(high-level concepts or abstracts) to accomplish arbitrary tasks. We first
provide a network architecture integrating GenAI capabilities to manage both
network protocols and applications. Building on this, we investigate effective
communication and reasoning problems by proposing a semantic-native GenAINet.
Specifically, GenAI agents extract semantic concepts from multi-modal raw data,
build a knowledgebase representing their semantic relations, which is retrieved
by GenAI models for planning and reasoning. Under this paradigm, an agent can
learn fast from other agents' experience for making better decisions with
efficient communications. Furthermore, we conduct two case studies where in
wireless device query, we show that extracting and transferring knowledge can
improve query accuracy with reduced communication; and in wireless power
control, we show that distributed agents can improve decisions via
collaborative reasoning. Finally, we address that developing a hierarchical
semantic level Telecom world model is a key path towards network of collective
intelligence.
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